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Algorithms for the formation of a procedure for the stable estimation of parameters matrices and covariances of perturbation vectors in indefinite dynamic systems based on the concepts of matrix pseudo-inversion are given. For stable pseudo-inversion, the matrix partitioning method is used using simplified regularization. The above algorithms allow for a stable estimation of the matrix of parameters and covariances of the perturbation vectors in dynamic systems and thereby increase the accuracy of adaptive control systems operating in parametric and signal uncertainty conditions.

  • Ссылка в интернете
  • DOI
  • Дата создание в систему UzSCI10-01-2020
  • Количество прочтений369
  • Дата публикации19-10-2018
  • Язык статьиIngliz
  • Страницы16-19
English

Algorithms for the formation of a procedure for the stable estimation of parameters matrices and covariances of perturbation vectors in indefinite dynamic systems based on the concepts of matrix pseudo-inversion are given. For stable pseudo-inversion, the matrix partitioning method is used using simplified regularization. The above algorithms allow for a stable estimation of the matrix of parameters and covariances of the perturbation vectors in dynamic systems and thereby increase the accuracy of adaptive control systems operating in parametric and signal uncertainty conditions.

Имя автора Должность Наименование организации
1 Igamberdiyev H.Z. 2Department of Information processing and control systems, Tashkent State Technical University, Tashkent, Uzbekistan Address: Universitetskaya-2, 100095 Tashkent city, Republic of Uzbekistan E-mail: 1ihz_tstu@gmail.ru, 3uktammamirov@gmail.com TDTU
2 Mamirov U.F. 2Department of Information processing and control systems, Tashkent State Technical University, Tashkent, Uzbekistan Address: Universitetskaya-2, 100095 Tashkent city, Republic of Uzbekistan E-mail: 1ihz_tstu@gmail.ru, 3uktammamirov@gmail.com TDTU
Название ссылки
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